Abstract

Understanding how, where, and when animals move is a central problem in marine ecology and conservation. Key to improving our knowledge about what drives animal movement is the rising deployment of telemetry devices on a range of free‐roaming species. An increasingly popular way of gaining meaningful inference from an animal's recorded movements is the application of hidden Markov models (HMMs), which allow for the identification of latent behavioral states in the movement paths of individuals. However, the use of HMMs to explore the population‐level consequences of movement is often limited by model complexity and insufficient sample sizes. Here, we introduce an alternative approach to current practices and provide evidence of how the inclusion of prior information in model structure can simplify the application of HMMs to multiple animal movement paths with two clear benefits: (a) consistent state allocation and (b) increases in effective sample size. To demonstrate the utility of our approach, we apply HMMs and adapted HMMs to over 100 multivariate movement paths consisting of conditionally dependent daily horizontal and vertical movements in two species of demersal fish: Atlantic cod (Gadus morhua; n = 46) and European plaice (Pleuronectes platessa; n = 61). We identify latent states corresponding to two main underlying behaviors: resident and migrating. As our analysis considers a relatively large sample size and states are allocated consistently, we use collective model output to investigate state‐dependent spatiotemporal trends at the individual and population levels. In particular, we show how both species shift their movement behaviors on a seasonal basis and demonstrate population space use patterns that are consistent with previous individual‐level studies. Tagging studies are increasingly being used to inform stock assessment models, spatial management strategies, and monitoring of marine fish populations. Our approach provides a promising way of adding value to tagging studies because inferences about movement behavior can be gained from a larger proportion of datasets, making tagging studies more relevant to management and more cost‐effective.

Highlights

  • The spatial management of the marine world requires in-­depth information about how animals move, when they move, and where they move to

  • Key to increasing our understanding of species space use, movement patterns, and how individuals interact with the environment they inhabit is the rising deployment of small and reliable data loggers and transmitters on free-­roaming marine animals (Costa, Breed, & Robinson, 2012; Hays et al, 2016; Hussey et al, 2015)

  • Capable of recording a range of movement metrics, including horizontal and vertical movement alongside basic environmental information such as water temperature, salinity, and ambient daylight, these devices have revolutionized our understanding of fundamental ecology (Hussey et al, 2015), documented oceanwide dispersal events (Block et al, 2011), highlighted areas that are essential for species survival (Raymond et al, 2015), and even allowed us to test the effectiveness of current conservation policies (Pittman et al, 2014; Scott et al, 2012)

Read more

Summary

| INTRODUCTION

The spatial management of the marine world requires in-­depth information about how animals move, when they move, and where they move to. One of the main motivations for animal-­borne telemetry studies is that by understanding individual movement behavior, we might infer the population-­, species-­ and community-­level consequences of movement (Block et al, 2011; Hindell et al, 2016; Raymond et al, 2015; Wakefield et al, 2011). This is especially true in marine systems, as individual observations provide our only insight into the otherwise unobservable. By analyzing a relatively large dataset, we provide a unique insight into how differing substocks of cod and plaice shift their behavior on a seasonal basis, with clear consequences for fisheries management and conservation

| MATERIALS AND METHODS
| DISCUSSION
Findings
CONFLICT OF INTEREST
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call